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Evaluation of Modern Laser Based Indoor SLAM Algorithms

Kirill Krinkin, Artyom Filatov, Art yom Filatov, Artur Huletski, Dmitriy Kartashov

Year
2018
Citations
29

Abstract

One of the key issues that prevents creation of a truly autonomous mobile robot is the simultaneous localization and mapping (SLAM) problem. A solution is supposed to estimate a robot pose and to build a map of an unknown environment simultaneously. Despite existence of different algorithms that try to solve the problem, the universal one has not been proposed yet [1]. A laser rangefinder is a widespread sensor for mobile platforms and it was decided to evaluate actual 2D laser scan based SLAM algorithms on real world indoor environments. The following algorithms were considered: Google Cartographer [2], GMapping [3], tinySLAM [4]. According to their evaluation, Cartographer and GMapping are more accurate than tinySLAM and Cartographer is the most robust of the algorithms.

Keywords

Simultaneous localization and mappingMobile robotComputer scienceArtificial intelligenceComputer visionKey (lock)RobotAlgorithmComputer security

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